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A Bayesian classifiers based combination model for automatic text classification

机译:基于贝叶斯分类器的文本自动分类组合模型

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Text classification deals with allocating a text document to a predetermined class. Generally, this involves learning about a class from representations of documents belonging to that class. In this paper, we propose a classifier combination that uses a Multinomial Naïve Bayesian (MNB) classifier along with Bayesian Networks (BN) classifier. The results of two classifiers are combined by taking an average of the probability distributions calculated by each of the two classifiers. Feature extraction and selection techniques have been incorporated with the model to find the most discriminating terms for classification. This classification model has been tested on three real text datasets. According to experiments, this approach showed better performance and the overall accuracy is higher than the accuracies of the two constituent classifiers. This technique also surpasses the accuracy of other well known, standard classifiers. This approach differs from the previous classification techniques in that it successfully incorporates MNB and BN classifiers and shows significantly better results than using either of the two classifiers separately. A comparative study of previous approaches with our method indicates a significant improvement over a number of techniques that were evaluated on the same dataset.
机译:文本分类处理将文本文档分配给预定的类别。通常,这涉及从属于该类的文档的表示中学习该类。在本文中,我们提出了一个分类器组合,该组合使用多项朴素贝叶斯(MNB)分类器以及贝叶斯网络(BN)分类器。通过取两个分类器中每个分类器计算的概率分布的平均值来合并两个分类器的结果。特征提取和选择技术已与模型结合在一起,以找到最有区别的分类术语。此分类模型已在三个真实文本数据集上进行了测试。根据实验,该方法显示出更好的性能,并且总体准确性高于两个组成分类器的准确性。该技术还超过了其他众所周知的标准分类器的准确性。这种方法与以前的分类技术的不同之处在于,它成功地合并了MNB和BN分类器,并且比分别使用两个分类器中的任一个显示出明显更好的结果。通过我们的方法对以前的方法进行的比较研究表明,与在同一数据集上评估的许多技术相比,有了显着的改进。

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